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Automatically Mapped Transfer between Reinforcement Learning Tasks via Three-Way Restricted Boltzmann Machines

机译:通过三向受限玻尔兹曼机在强化学习任务之间自动映射传输

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Existing reinforcement learning approaches are often hampered by learning tabula rasa. Transfer for reinforcement learning tackles this problem by enabling the reuse of previously learned results, but may require an inter-task mapping to encode how the previously learned task and the new task are related. This paper presents an autonomous framework for learning inter-task mappings based on an adaptation of restricted Boltzmann machines. Both a full model and a computationally efficient factored model are introduced and shown to be effective in multiple transfer learning scenarios.
机译:现有的强化学习方法通​​常会因学习tabula rasa而受阻。强化学习的转移通过启用先前学习的结果的重用来解决此问题,但是可能需要任务间映射来编码先前学习的任务和新任务之间的关系。本文提出了一种基于自适应Boltzmann机器的学习任务间映射的自主框架。完整模型和计算有效的因式模型均被引入,并被证明在多种转移学习场景中有效。

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